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pandas.DatetimeIndex.quarter Might also be useful.
And then you can use groupby to aggregate easily.
You could use Seaborn facetgrid.
I am using a number of pipelines to compare in cross validation. As a benchmark model I want to include a simple model which uses always the same fixed coefficient, and hence, doesn't depend on the tr …
You could use starmap to pass multiple arguments so that you can keep track of your seeds outside your worker functions.
from multiprocessing import Pool
def run_process(task_nr,seed): …
The problem is you group on items after removing users that did not interact more than X times. You first need to check independently on both conditions and only then combine the results.
import p …
When running colaboratory notebooks, I experience that the notebook sometimes loses it's state after making changes to one of the cells, which makes me need to rerun the entire notebook.
I am aware o …
If I understand your question correctly using .apply is not necessary in this case. This is something I would avoid unless there's no other option because of performance issues.
The idea is that the data which you use to fit the model to contains exactly the same features as the data you used to train the model.
Finally, I delete features that were extracted from this art …
Maybe you can try setting join
'If True, lines will be drawn between point estimates at the same hue level.'
Alternatively, you could use:
If you want to do elementwise operations on columns you can't adress your columns like this.
Use numpy where
import numpy as np
s = np.random.poisson(size=n, lam=p)